Generative-contrastive learning for open set radar emitter identification

IF 3.6 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Dongming Wu, Junpeng Shi, Zhiyuan Zhang, Zhihui Li, Fangling Zeng
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引用次数: 0

Abstract

In traditional radar emitter identification (REI) tasks, both the training and testing samples share the same distribution, and the model is trained solely to recognize known targets. However, in non-cooperative electromagnetic environments, unknown classes are often absent from the training data, which may be incorrectly classified as known classes. To address this issue, we propose an innovative Generative-contrastive Learning method for Open Set REI (GLOSE) from the perspective of feature space optimization. We first introduce a conditional generative model derived from diffusion to generate stable interpolated samples within the feature space, which are defined as an additional class to compress the coverage of known classes, thereby enhancing the capability to handle unknown space. Subsequently, we employ contrastive learning with an adaptive contrastive loss to further optimize the discriminative power of the feature space, which applies varying levels of intra-class similarity for different types of samples. Extensive experiments are conducted on a simulated radar emitter dataset based on intra-pulse unintentional modulation and a real-world automatic dependent surveillance-broadcast (ADS-B) dataset. The results demonstrate that the proposed method significantly improves the detection capability of unknown class samples while maintaining high classification accuracy for known classes.
开放集雷达辐射源识别的生成-对比学习
在传统的雷达辐射源识别(REI)任务中,训练样本和测试样本的分布是相同的,并且只训练模型来识别已知目标。然而,在非合作的电磁环境中,训练数据中往往缺少未知类,这可能会被错误地分类为已知类。为了解决这一问题,我们从特征空间优化的角度提出了一种创新的开放集REI生成-对比学习方法(GLOSE)。我们首先引入了一个由扩散导出的条件生成模型,在特征空间内生成稳定的插值样本,并将其定义为一个额外的类,以压缩已知类的覆盖范围,从而增强处理未知空间的能力。随后,我们采用带有自适应对比损失的对比学习来进一步优化特征空间的判别能力,对不同类型的样本应用不同程度的类内相似度。在基于脉冲内无意调制的模拟雷达发射器数据集和现实世界的自动相关监视广播(ADS-B)数据集上进行了大量实验。结果表明,该方法在对未知类样本保持较高分类精度的同时,显著提高了未知类样本的检测能力。
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来源期刊
Signal Processing
Signal Processing 工程技术-工程:电子与电气
CiteScore
9.20
自引率
9.10%
发文量
309
审稿时长
41 days
期刊介绍: Signal Processing incorporates all aspects of the theory and practice of signal processing. It features original research work, tutorial and review articles, and accounts of practical developments. It is intended for a rapid dissemination of knowledge and experience to engineers and scientists working in the research, development or practical application of signal processing. Subject areas covered by the journal include: Signal Theory; Stochastic Processes; Detection and Estimation; Spectral Analysis; Filtering; Signal Processing Systems; Software Developments; Image Processing; Pattern Recognition; Optical Signal Processing; Digital Signal Processing; Multi-dimensional Signal Processing; Communication Signal Processing; Biomedical Signal Processing; Geophysical and Astrophysical Signal Processing; Earth Resources Signal Processing; Acoustic and Vibration Signal Processing; Data Processing; Remote Sensing; Signal Processing Technology; Radar Signal Processing; Sonar Signal Processing; Industrial Applications; New Applications.
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